local GGELUA = __gge.dozlibbase64[[
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]]


local 支持库 = class(GGELUA)


function 支持库:初始化(文件路径)
    self.宽度 = self.Width
    self.高度 = self.Height
    self.行数 = self.MapRowNum
    self.列数 = self.MapColNum
    self.障碍宽度 = self.MapColNum*16
    self.障碍高度 = self.MapRowNum*12
end


function 支持库:取宽高()
    return self.Height,self.Width
end

function 支持库:取行列()
    return self.MapRowNum,self.MapColNum
end

--[[
MapRowNum = ceil(宽度/320)
MapColNum = ceil(高度/240)
地表号码算法 = 行*MapRowNum+列-1   --(-1是因为从0开始)
function 支持库:取纹理(地表号码)
    内部已经缓存
    返回纹理
end
function 支持库:取障碍()
    返回指针和长度
end
function 支持库:取遮罩(遮罩号码)
    内部已经缓存
    返回表(T=纹理,X=x坐标,Y=y坐标,W=宽度,H=高度,I=遮罩号码)
    失败返回{T=空纹理,X=0,Y=0,W=0,H=0}
end
function 支持库:取附近遮罩(地表号码)
    返回遮罩号码数组
end
--]]
function 支持库:切割遮罩(id)--按20宽度切割成精灵
    local 数据 = self:取遮罩(id)
    local r,精灵 = {}
    for x=0,数据.W,20 do
        if x<数据.W then
            if x+20>数据.W then
                精灵 = require("gge精灵类")(数据.T,x,0,数据.W-x,数据.H)
                精灵.排序点 = 数据.Y+数据.T.排序点[x]
            else
                精灵 = require("gge精灵类")(数据.T,x,0,20,数据.H)
                精灵.排序点 = 数据.Y+数据.T.排序点[x+10]
            end
            精灵.X=数据.X+x
            精灵.Y=数据.Y
            --精灵.id=id
            table.insert(r, 精灵)
        end
    end
    return r
end
return 支持库